Applied Machine Learning Engineer

The Big Phone Store
Wolverhampton
3 weeks ago
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Overview

Applied Machine Learning Engineer – Hybrid Role

Location: Wolverhampton (Hybrid)

Salary: Starting at £25,000 per year

Full-Time Position

What You'll Do
  • Design & Deploy Models – build practical machine learning solutions to improve efficiency and growth
  • Turn Data into Strategy – translate insights into actions for stakeholders across the business
  • Collaborate Cross-Functionally – work with marketing, operations, and product teams to identify AI opportunities
  • Contribute to Team Growth – share knowledge, support colleagues, and learn in a collaborative environment
Who You Are
  • AI/ML Skilled – strong understanding of algorithms, data structures, and model development
  • Clear Communicator – able to explain technical ideas simply to non-technical teams
  • Team-Oriented – thrive in collaborative settings with a problem-solving mindset
  • Data-Driven – passionate about using data to uncover business opportunities
  • Ambitious & Curious – proactive and eager to grow with hands-on challenges
Why Join Us?
  • Impactful Work: See your models influence real business outcomes in a fast-growing industry
  • Career Growth: Mentorship, continuous training, and clear progression pathways
  • Flexibility & Balance: Hybrid working, flexible hours, extra holidays with service
  • Perks & Benefits: Paid birthday off, staff discounts, pension scheme, free parking, and regular socials
  • Inclusive Culture: Proud equal opportunities employer since 1999


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